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Characterization of
Maize ProducingHouseholds in DroughtProne Regions ofEastern
AfricaOlaf Erenstein, Girma Tesfahun Kassie, Augustine Langyintuo and
Wilfred Mwangi
SOCIO-ECONOMICS
Working Paper 1
December 2011
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SOCI O-ECONOMI CS
Working Paper 1
Olaf Erenstein1*, Girma Tesfahun Kassie2, Augustine Langyintuo3,
& Wilfred Mwangi
4
December 2011
1International Maize and Wheat Improvement Center (CIMMYT), Addis Ababa, Ethiopia2 CIMMYT, Harare Zimbabwe
3CIMMYT, Harare Zimbabwe; present affiliation: Agra-Alliance, Nairobi Kenya4
CIMMYT, Nairobi Kenya*Corresponding Author: Tel: +251.912 456 470; e-mail: [email protected]
Characterizat ion of Maize Producing Households
in Drought Prone Regions of Eastern Afr ica
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Table 23. Management responses to selected scenarios for surveyed farm households inthe drought prone study areas of eastern Africa (% households). .................... 28
Table 24. Perceived drought susceptibility of selected crops by surveyed farm householdsin the drought prone study areas of eastern Africa........................................... 29
Table 25. Crop yield risk indicators for surveyed farm households in the drought pronestudy areas of eastern Africa. ........................................................................... 30
Table 26. Crop price risk indicators for surveyed farm households in the drought prone
study areas of eastern Africa. ........................................................................... 31Table 27. Selected risk indicators for surveyed farm households in the drought prone
study areas of eastern Africa. ........................................................................... 32Table 28. Reported threats to livelihoods for surveyed farm households in the drought
prone study areas of eastern Africa (% households reporting). ........................ 33Table 29. Reported constraints to livelihood improvement for surveyed farm households
in the drought prone study areas of eastern Africa (% households reporting). . 34Table 30. Reported shocks by surveyed farm households in the drought prone study areas
of eastern Africa (% households reporting amongst 5 most serious over last
decade). ........................................................................................................... 35
Table 31. Preferred strategies to enhance livelihoods for surveyed farm households in thedrought prone study areas of eastern Africa (% households reporting amongsttheir 3 priorities). ............................................................................................. 36
Table 32. Selected maize varietal indicators of surveyed farm households in the droughtprone study areas of eastern Africa. ................................................................. 38
Table 33. Preferred maize varieties as stated by surveyed farm households in the droughtprone study areas of eastern Africa. ................................................................. 39
Table 34. Index scores for preferred maize varieties by type as stated by surveyed farmhouseholds across the drought prone study areas of eastern Africa. ................ 40
Table 35. Desired characteristics of ideal maize variety for surveyed farm households inthe drought prone study areas of eastern Africa (% of households). ................ 41
Table 36. Factors influencing maize varietal choice for surveyed farm households in the
drought prone study areas of eastern Africa (% of households). ...................... 41Table 37. Reasons for not using known maize varieties by seed type for surveyed farm
households in the drought prone study areas of eastern Africa. ....................... 42Table 38. Selected maize seed indicators for surveyed farm households in the drought
prone study areas of eastern Africa. ................................................................. 43Table 39. Reported maize varieties used in survey year by surveyed farm households in the
drought prone study areas of eastern Africa..................................................... 44Table 40. Selected improved maize seed use indicators for surveyed farm households in
the drought prone study areas of eastern Africa............................................... 45Table 41.
Reported initialimproved maize varieties by surveyed farm households in thedrought prone study areas of eastern Africa (n=635). ...................................... 46
Table 42. Improved maize varieties access indicators for surveyed farm households in thedrought prone study areas of eastern Africa..................................................... 46
Table 43. Maize seed purchase indicators for survey year of surveyed farm households inthe drought prone study areas of eastern Africa............................................... 47
Table 44. Reported maize varieties purchased in survey year by surveyed farm householdsin the drought prone study areas of eastern Africa........................................... 48
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Acronyms
FAO : Food and Agricultural Organization of the United Nations
hh : Household
IMS : Improved maize seedMasl : Meters above sea level
OPV : Open-pollinated variety
PCA : Principal component analysis
PFS : Probability of failed season
SSA : Sub-Saharan Africa
TLU : Tropical livestock unit
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Acknowledgements
The present study and the underlying country level studies received financial support from
the Drought Tolerant Maize for Africa (DTMA) initiative. This initiative joins the efforts of
people, organizations and projects supporting the development and dissemination of
drought tolerant maize in 13 countries in SSA. The initiative is supported by the Bill &
Melinda Gates Foundation and Howard G. Buffet Foundation. For further information
about the initiative reference is made to the project website (http://dtma.cimmyt.org).
The present report synthesizes the findings of the household surveys in the drought prone
regions of four eastern Africa countries: Ethiopia, Kenya, Uganda and Tanzania. The
authors gratefully acknowledge all those that contributed to the country level studies, in
particular Getachew Legese and Moti Jaleta for Ethiopia (Legese et al., 2010 ); Lutta
Muhammad, Domisiano Mwabu, and Richard Mulwa for Kenya (Muhammad et al., 2010);
Johnny Mugisha, Gratious M. Diiro and William Ekere for Uganda (Mugisha et al., 2011)
and Anna Temu, Appolinary Manyama, Charles Mgeni and Betty Waized for Tanzania
(Temu et al., 2011) and CIMMYT colleague, Roberto La Rovere. We are grateful to Kai
Sonder from the CIMMYT GIS lab, Mexico for generating the study site map, to reviewers
for reviewing and to Wandera Ojanji for editing. The authors are responsible for any
remaining errors and inferences.
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Abstract
Agriculture in eastern Africa is predominantly rainfed and maize is a major food crop,primarily produced for home consumption and the market by small-scale family farms. The
study characterized farm households in the drought prone maize growing areas of easternAfrica synthesizing data from parallel household surveys in Ethiopia, Kenya, Uganda andTanzania. The study provides a comparative analysis of the farm households assets,livelihood strategies and crop management practices, with an emphasis on maize and maizeseed. This illustrates how farmers in a similar agro-ecological environment but with differentsocio-economic and institutional settings have variously adapted to living with drought andhow the inherent weather risk co-determines the livelihood portfolio, agriculturalintensification incentives and system development pathways. The study thereby illustratesthe challenges for agricultural intensification in such drought prone environments and thescope for drought tolerant maize varieties and explores the research and developmentimplications.
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1. Introduct ionMaize is the most important cereal food crop in sub-Saharan Africa (SSA), particularly in
eastern and southern Africa where it accounts for 53% of the total cereal area (FAO, 2010)
and 30-70% of total caloric consumption (Langyintuo et al., 2010). Maize production in SSA
is typically rainfed and drought prone. Drought has an overwhelming importance to SSA,
affecting peoples livelihoods, food security and economic development. CIMMYT (1990)
initially estimated that some 40% of the maize area in SSA experience occasional drought
(defined as causing yield losses of 10-25%) and 25% experience frequent drought (defined as
causing yield losses of 25-50%). Frequent drought is particularly problematic for tropical and
subtropical maize in SSA, and causes a 33% further maize yield reduction compared to less
stressed areas (Heisey and Edmeades, 1999). Effective approaches to combat current
impacts of drought are of utmost importance, more so as the situation is set to become even
worse as climate change progresses (Cooper et al., 2008; Jones and Thornton, 2003;
Thornton et al., 2009; Thornton et al., 2008).When recurrent droughts in SSA ruin harvests,
lives and livelihoods are threatened, even destroyed.
Developing, distributing and cultivating drought tolerant maize varieties in SSA is one highly
relevant intervention to reduce vulnerability, food insecurity and damage to local markets
due to food aid. But to succeed it needs to be embedded in local reality. Unfortunately for
much of SSA basic descriptive statistics and data on farm livelihoods and practices that
would inform such an intervention are not available. It is for this reason that rapid
community assessments and detailed household surveys were conducted in drought prone
areas of eastern Africa (Ethiopia, Kenya, Uganda and Tanzania) to characterize the maize
producing households.
The original country level studies provide detailed descriptive accounts of the household
survey findings (Legese et al., 2010; Mugisha et al., 2011; Muhammad et al., 2010; Temu et
al., 2011). The present report synthesizes the findings of these four parallel household
surveys in drought prone regions of eastern Africa. This synthesis thereby revisits and re-
analyzes the original primary data and focuses on the sub-regional contrasts, similarities and
implications. The present study is complemented by similar synthesis of parallel household
surveys in southern Africa (Zambia, Zimbabwe, Malawi, Angola, and Mozambique) and
western Africa (Nigeria, Ghana, Benin and Mali).
The present report is organized into six chapters. The second chapter presents the drought
prone study areas of eastern Africa and the methodology. The third chapter characterizes the
households based on their livelihood assets whereas the fourth chapter characterizes the
household livelihood strategies. The fifth chapter presents the technology use in crop
production, with an emphasis on maize and maize seed. The sixth chapter concludes.
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2.Study area, materials and met hods2.1 Study areaThe four eastern Africa study countriesEthiopia, Kenya, Uganda and Tanzaniaencompass a total population of some 200 million living in an area of 2.9 million km2. At a
country level, Ethiopia and Kenya have about average population densities, but Uganda ismore densely populated and Tanzania least (Table 1). Only 12% of the area is consideredarable (0.34 million km2), although this share is about double in Uganda. In Kenya,agriculture contributes a quarter of the Gross Domestic Product (GDP) compared to over athird in the other countries. There is still widespread poverty, particularly in rural areas,although indicators vary as to the depth of poverty (Table 1). Maize is an important crop inthe region, annually planted on 7.3 million ha (corresponding to 21% of the arable area and41% of land under cereals). However, there are some marked regional variations in relativemaize area (Table 1), being highest in Kenya and lowest in Ethiopia where maize comessecond after teff (Eragrostis tef). Ethiopia has also quite diverse and substantial areas undersorghum, wheat and barley. Regional maize yields average only 1.6 tons per ha (Table 1).
Table 1. Selected characteristics of the study countries in eastern Africa.
Ethiopia Kenya Uganda Tanzania
Population density (km-2) [census] 1 67 [2007] 67 [2009] 103 [2002] 22 [2002]
Arable area (%) 2 12 9 23 10
Agricultural share in GDP 3 38 25 35 42
Poverty rate (%) 4
- National poverty line 44 47 31 36- Purchasing power parity $1.25/d 39 20 52 89- Multidimensional poverty 90 60 - 65
National maize (TE 2008) 2
- Area harvested (million ha) 1.7 1.7 .8 3.1- Production (million tons) 3.7 2.8 1.3 3.6- Yield (ton/ha) 2.2 1.6 1.5 1.2
Relative maize area 2
- % arable land 12 33 15 32- % cereal area 19 81 47 61
Note: TE: Triennium ending. Sources: 1 Derived from http://en.wikipedia.org/ (accessed Jan 2011); 2Derivedfrom FAO, 2010; 3 Fan et al., 2008; 4 UNDP, 2010
The study focuses on the drought prone maize producing areas in these four eastern Africa
countries. In each country, two maize growing districts were purposively selected from themedium drought risk zone, defined as having a 20-40% probability of failed season
(Thornton et al., 2006). This indicator reflects the percentage of years in which an annual
crop is expected to fail due to severe water stress based on simulated data using a weather
generator and the estimated actual and potential evapo-transpiration and length of the
growing period (Thornton et al., 2006).
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Figure 1. Location of survey districts in the sub-region.Source: Created by Kai Sonder, CIMMYT GIS lab, Mexico
2.2 Material and met hodsFrom the two selected drought prone maize producing districts, a multi-stage random
sample of farm households was selected with a number of random villages selected first
(Annex 1) and from these, a number of random farmers. In the first batch of survey
countries (Ethiopia and Kenya), the sample amounted to some 350 farm households with
the survey being implemented mid-2007 (Table 3). The survey was subsequently extended to
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a second batch of survey countries (Uganda and Tanzania) with a sample size of some 150
farm households with the survey being implemented in mid-2008 (Table 3).
Table 3. Sample characteristics in the drought prone study areas of eastern Africa.Ethiopia Kenya Uganda Tanzania
Surveyed districts 1 Adama Machakos Nakasongola Chamwino2 ATJK Makueni Soroti ManyoniSample size (# of hh) 1 172 175 71 75
2 197 174 78 77Total 369 349 149 152Survey year 2007 2007 2008 2008
The comprehensive questionnaire was basically the same across the four countries albeit
that some additional questions were added to the second batch of survey countries.1 In each
country, the survey was collected by dedicated enumerators during a single visit. The
information collected reflects the respondents responses, with no additional measurements
from the surveyor side (except for global-positioning system coordinates where collected).
The enumerators typically interviewed the household head (80% of cases), with on average
28% of respondents being female (Table 4). Ethiopia and Kenya however stand out: in
Ethiopia female and non-household head respondents were virtually absent, whereas in
Kenya these amounted to about half the respondents. Household heads are typically male.
Having the non-household head as respondent was typically associated with the temporary
non-availability of the household head (Table 4).
Table 4. Selected characteristics of respondents in the drought prone study areas of easternAfrica.
Ethiopia Kenya Uganda Tanzania Sample mean (n)
Female respondent (% hh) 5 51 24 30 28 (1019)Respondent not hh head (% hh) 1 46 15 13 20 (1018)
If other respondent, head absent >6
months p.a. (% hh) 0 25 0 5 20 (199)
The data was originally entered, analyzed and reported at the country level using a common
data template and report outline (Legese et al., 2010; Mugisha et al., 2011; Muhammad et al.,
2010; Temu et al., 2011). Since these are parallel studies, a synthesis based on the country
reports alone is typically problematic (e.g. see Doss et al., 2003). For the purpose of this
synthesis, the datasets were merged and standardized to allow for cross-site analysis. The
data presented here may therefore differ somewhat from that reported in the original
country studies in view of standardization of approach and data across the country studies.
The data analysis presented here is primarily descriptive substantiated by simple statistics
to the extent possible. Variances were typically not equal over the countries. The analysis
therefore uses the Welch statistic to test for the equality of group means (which is preferable
1These are not synthesized here as they were only collected for the second batch countries (Uganda and Tanzania).
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to the F statistic when the assumption of equal variances does not hold); and Tamhane's T2
for a conservative pair-wise comparison test of means (based on a t test which is appropriate
when the variances are unequal - SPSS 16). Principal component analysis is used to assess
the households resource endowments. Limited dependent variable models are used to
analyze improved maize seed purchases.
The present report aims to provide a comprehensive synthesis of a substantive survey. As
such, all relevant variables for the four countries have been summarized in the numerous
tables. However, to keep the report to a manageable length, the text tends to only summarize
the pertinent findings. The interested reader is referred to the respective tables or underlying
country reports for further substantiation.
To facilitate comparison, all monetary values have been converted to US dollars using the
bank exchange rate for the survey year (http://www.oanda.com/currency/converter/
accessed October 2010).2
The original survey collected information on maize and other crops grown by the surveyed
farm households. For the purpose of the present report and underlying analysis, the
information on these other crops is typically categorized into either other cereals, legume
crops, roots & tubers or other crops. Maize is categorized as local, improved open-
pollinated variety (OPV) and hybrid based on the actual maize varieties reported by the
surveyed farmers. However not all farmers are fully conversant with such categorization and
the analysis thereby typically uses the prevailing categorization within the surveyed
communities. Even so, this categorization remains indicative, for instance, the local category
may include some of the older recycled improved varieties. The use of improved OPVs or
hybrids also does not necessarily imply the use of fresh seed, as recycling of both categories
is common.
It should be recalled that the surveys targeted the drought prone maize producing areas, and
are limited to only two districts per country. The study results are thus not representative for
the country as a whole, but were intended to be representative for the target area. Care
should thus be taken when interpreting references to specific countries in the tables or text,
with most instances unless otherwise specified, referring to the drought prone study areas
and not to the country as a whole. Furthermore, the present synthesis aggregates the two
study districts per country. Within country differences are explored in the respective country
reports.
2ET: 8.8877 Ethiopian Bir/US$; KY: 66.55 KSh/US$; UG: 1555 USh/US$; TZ: 1149.4 TSh/US$.
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3 Household characteristicsIn the pursuit of their livelihood strategies, farm households in the drought prone areas of
eastern Africa draw on a portfolio of assets. The present chapter characterizes the
livelihoods assets of the farm households namely, human, natural, physical, financial and
social capital. The chapter ends with a principal component analysis of the household assetbase.
3.1 Human capitalThe size of the surveyed rural households averages seven people, of which only half can be
considered as economically active (i.e. being aged between 16-60 years) and the remainder
primarily being children (i.e. less than 16 years old - Table 5). Households are typically male
headed (90%) with households head being married (87%), 46 years old and having
completed only primary education (Table 5; Table 6).
The surveyed rural households are typically small-scale family farms, drawing on the family
as their main labor source. Each household comprises an average of 4.3 adult equivalents,
which implies 3.3 adult equivalents per ha of farm land and 0.6 adult units per capita. An
annual average of 51 months of family labor (including children) is reportedly dedicated to
the family farm. The household head is the main decision maker for farming activities
either solely (68%) or in consultation with other (27% - Table 5). Households are thereby
somewhat constrained by the relatively limited educational level of the household head
with the households educational status only being marginally better (i.e. when considering
the highest educational status across household members), with an average of only 5 years of
schooling per capita (Table 6).
The sample averages mask some substantial variations between the countries surveyed
(Table 5; Table 6). For instance, household size in the study areas was substantially higher in
Uganda and Ethiopia (8) and lowest in Tanzania (5), the latter also having the highest
incidence of female headed households (18%). The Kenya study area combined relatively
aged households (as illustrated by average household age; limited share of children; oldest
household heads) with the most decentralized decision making with respect to farming;
whereas the Ethiopia study area combined relatively young households, male dominance and
relative low educational attainment levels of particularly the household head.
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Table 5. Selected household characteristics of surveyed farm households in the drought prone
study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean (sd, n)
Household size (#) 7.7 c 6.3 b 8.3 c 5.2 a 6.9 (3.4, 1018)
Hh members by age bracket (% hh
members, 1016)
- 60 4 a 14 b 5 a 6 a 8 (16)
Female headed hh (% of hh) 5 12 10 18 10 (30, 1013)
Age (years)
- household head 42 a 52 c 46 b 43 ab 46 (15, 983)
- household members 16 a 28 c 21 b 23 b 22 (11, 1017)
Marital status household head (%,
n=1014)
- Single 3 5 3 4 4- Married 94 81 88 85 87-
Divorced/separated1 1 3 3 2
- Widowed 2 13 7 8 7Adult-equivalent units
- Per household 4.4 b 4.3 b 5.2 c 3.2 a 4.3 (2.3, 1017)- Per farm ha 2.2 b 5.9 c 1.8 a 1.5 a 3.3 (4.1, 1012)- Per capita .59 a .69 c .64 b .64 b .64 (1.2, 1017)
Family farm labor (months/hh pa) 79 d 36 b 52 c 19 a 51 (38, 1016)
Main decision maker farming (%,
n=965)
- Household head 97 30 58 86 68- Household head with
others 1 59 39 14 27
- Other thanhousehold head 2 12 2 0 5
Notes: sd: standard deviation; n: sample size; all ps (Welch or Chi-square) highly significant (0.00). Data preceding different
letters differ significantly Tamhane's T2 (significance level: 0.10), within row comparison.
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Table 6. Selected education indicators of surveyed farm households in the drought prone study
areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean (sd, n)
Educational status hh head (%) (1013)
- Illiterate 28 10 5 10 16- Adult education 12 1 1 1 5- Primary school 48 54 58 88 58- Secondary school 10 27 31 1 18- Post-secondary school 2 8 5 0 4
Years of schooling hh head 4.8 a 7.9 b 8.1 b 5.4 a 6.5 (4.3, 1013)
Highest educational status
household (%) (1017, nr)
- Illiterate 4 0 0 3 2- Adult education 1 0 0 1 1- Primary school 61 33 32 84 51- Secondary school 26 48 52 13 36- Post-secondary school 7 19 15 1 11
Av years of schooling per capita(n=1017)
3.5 a 6.7 b 6.3 b 3.8 a 5.1 (2.7)
Notes: sd: standard deviation; n: sample size; all ps (Welch or Chi-square) highly significant (0.00) unless otherwise
indicated (nr: not relevant [empty cells]). Data preceding different letters differ significantly Tamhane's T2 (significance
level: 0.10), within row comparison.
3.2 Natural capit alLand and livestock are the main natural assets of the farm households, averaging 3 ha of
land and 2.6 tropical livestock units, equivalent to about half a unit of each per capita. Land
is primarily used for the cultivation of annual crops (2.1 ha), with only 0.2 ha under perennial
crops and 0.6 ha under pasture/fallow (Table 7). These averages again mask substantialregional variation. The drought prone study areas in Kenya combine relatively small farms
with a modest livestock herd although this still implies relatively high livestock densities
per unit farm area (Table 7). Farm and herd size was the largest in the Uganda study areas,
but included a substantial area under fallow/pasture. Perennial crops were primarily limited
to the Uganda study areas, linked inter alia to the more favorable rainfall regime (amount and
bimodal distribution). Indeed, perennial crops were virtually absent in the study areas of
Ethiopia and Tanzania with their limited and mono-modal rainfall.
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Table 9. Selected credit indicators of surveyed farm households in the drought prone study areas
of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
Fund shortage (% reporting,
n=1013) 91 74 97 96 87
Credit (% reporting) 28 1 21 5 15
Types of credit (% reporting)
- Production 13 1 15 3 8
- Consumption 2 0 1 0 1 (nr)
- Fertilizer 13 0 1 0 5
- Maize seed 5 0 3 0 2
- Other seed 0 0 0 0 0 (nr)
# of credit types reported* 0.33 c 0.01 a 0.21 b 0.03 a 0.16 (.44)
Reasons for not using credit (%
reporting) ** (n=220) (n=331) (n=112) (n=137) (n=800, nr)
- no credit source in vicinity 53 27 39 43 39
- did not look for credit 29 37 35 16 31
- no collateral as guarantee 3 29 14 22 19
- high interest rate 8 4 15 1 6
- other 8 2 2 18 7
Notes: n=1019 unless otherwise indicated; all ps (Welch or Chi-square) highly significant (0.00) unless otherwise indicated
(nr: not relevant [empty cells; multiple response]). Data preceding different letters differ significantly Tamhane's T2
(significance level: 0.10), within row comparison. * Credit types as mentioned above (max 5).** Multiple responses possible
does not sum to 100%.
Social capital provides households with important additional social entitlements that are
however problematic to measure empirically. The questionnaire did include a number of
institutional support indicators that can be used as a proxy (Table 10). About two-fifths of
the surveyed farm households were members of a farmers association/cooperative,
although this was markedly more common in Ethiopia (associated with access to inputs) andrelatively uncommon in Tanzania. About a third of the surveyed farm households reported
having received some aid/relief, mainly in the form of food relief or seed relief. Some 28%
attended selected agricultural extension activities (i.e. field days, field demonstrations and/or
maize discussions), such activities mainly being organized by agricultural extension services.
About half the surveyed farm households reported the extension service as a frequent source
of agricultural information, with 19% reporting mass media (i.e. radio, newspaper, television)
and 34% other sources, including other farmers (e.g. reported by 35% of households in
Kenya). Interestingly, the extension service was near universally reported as information
source in Ethiopia compared to less than a fifth in Kenya. About half of the surveyed farm
households in Ethiopia and Uganda reported any interaction with extension agents during
the survey year against a quarter to a third elsewhere. Overall, surveyed farm households in
Tanzania reported limited institutional support in terms of relief or extension, particularly
compared to Uganda (Table 10).
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Table 10. Selected institutional support indicators of surveyed farm households in the drought
prone study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
Member farmers association/-
cooperative (% hh, 1005) 61 34 43 14 42
Hh receiving (% reporting during
survey or preceding year)
- Food relief 9 35 7 1 16- Seed relief 15 2 18 4 10- Fertilizer relief 11 0 2 0 4- Livestock relief 0 0 8 0 1- Other relief 1 12 15 1 7- Any of relief/aid 35 44 42 6 35
Hh attending (% reporting for survey
year)
- Field days 4 22 45 6 17- Demo's 4 13 35 4 12- Maize discussions 28 18 38 2 22- Any of above 29 27 48 7 28
Agricultural information source (%,
n=924) *
- Extension service 96 16 32 33 47- Mass media 4 25 31 25 19- Other 0 59 37 42 34
Interactions ag. extension agents
- Any in survey year 45 27 50 33 38- # of times 1.3 b 0.6 a 2.2 c 0.9 ab 1.1 (2.3)
Notes: n=1019 unless otherwise indicated; all ps (Welch or Chi-square) highly significant (0.00) unless otherwise indicated(nr: not relevant [empty cells; multiple response]). Data preceding different letters differ significantly Tamhane's T2
(significance level: 0.10), within row comparison. * Multiple responses possible does not sum to 100%.
3.5 Categorizing household access to capital asset sThe foregoing sections show that the surveyed farm households present different
endowments in terms of the various livelihood assets. An asset based wealth index can be
used to create a single cross-cutting indicator of the households endowments. One way of
creating such an index is the use of principal component analysis (PCA), which has been
variously used to create wealth indices (Erenstein, 2011; Filmer and Pritchett, 2001;
Langyintuo and Mungoma, 2008).
PCA is a popular data reduction tool. It has however two limitations for the construction of
wealth/asset indices (Howe et al., 2008). Discrete data are particularly problematic, and
thereby inherently limit the choice of asset variables available for inclusion in the PCA. PCA
wealth/asset indices also tend to use only the first principal component which actually
explains only a low proportion of the total variation in the asset data. In the current study we
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thereby exclude discrete asset data and also present all principal components having an eigen
value larger than 1.
The PCA was applied to a set of eight non-discrete variables spanning the range of asset
categories for the surveyed farm households both for the combined study areas (Table 11)
and for each of the country specific study areas (Table 12). The number of principalcomponents is two for the combined application (explaining 41% of variance) and three-
four in the country specific applications (explaining 50-62%). The first principal component
(PC) alone typically explains 21% to 33% of variance, but tends to be variously associated to
the underlying assets. At the country level, the first PC is mainly associated with herd size
(Ethiopia, Uganda and Tanzania), physical assets (Ethiopia, Uganda and Kenya), farm size
(Ethiopia and Uganda), family labor (measured as adult equivalent units, Ethiopia and
Uganda) and schooling (Kenya and Tanzania).
Based on the first PC alone and using zero as a cut-off point, some two-fifths of the
households would be classified as well-endowed and the remainder as less-endowed in each
study area.3 At the regional level the first PC is most closely associated with herd size and
physical assets. As a result, more than two-thirds of Ugandan surveyed farm households
would be classified as relatively well-endowed based on the first regional PC alone, whereas
Tanzanian households would be primarily classified as less-endowed.4 The ease of
interpretation of the PCs could be enhanced by rotation, but this would reduce the
explanatory power of the first PC.
Table 11. Descriptive statistics and PCA results for livelihood assets of surveyed farm households
in the drought prone study areas of eastern Africa.
Meana Sd Component matrix Component scores PC1 PC2 PC1 PC2
Adult-eq. units (#/hh) 4.3 2.3 .56 .17 .29 .13
Schooling head (yr) 6.5 4.3 .43 .64 .22 .47
Farm size (ha) 2.9 4.2 .55 .36 .28 .26
Share irrigated (%) 1.6 10.2 .01 .36 .01 .26
Herd size (TLU) 2.6 4.0 .65 .22 .33 .16
Physical assets (#)b 2.9 1.8 .64 .52 .33 .39
Ext. interactions (#)c 1.6 2.8 .53 .12 .27 .09
Credit (# of types) 0.2 0.4 .20 .57 .10 .42
% of variance 24% 17%
Notes: sd: standard deviation; n: sample size =1019. 2 components have eigenvalue > 1 explaining 41% of variance. a For
each variable, missing values are replaced with the variable mean. b Sum of # of physical asset types including houseimprovements (i.e. improved walls and/or roof). c Sum of # of interactions with extension agents and number of types of
agricultural events attended (field days, demos or maize discussions).
3Based soley on PC1 of the country specific PCA, the shares of households categorized as well endowed are 43% (ET),
44% (KY), 38% (UG), 45% (TZ) and 43% (sample mean).4 Based soley on PC1 of the regional PCA, the shares of households categorized as well endowed are 38% (ET), 46%
(KY), 68% (UG), 16% (TZ) and 42% (sample mean), with each country being statistically significantly different from
the others (Duncan post-hoc).
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4 Household livelihood st rat egiesThe surveyed farm households in the drought prone areas of eastern Africa variously use
their portfolio of assets reviewed in the previous chapter as building blocks for their
livelihood strategies. The present chapter characterizes the livelihoods strategies pursued by
the farm households, particularly in terms of crop production, livestock production and off-farm income. It subsequently provides profiles of reported household cash income and
expenditures and summarizes the households profitability and risk perceptions. The chapter
ends with the outlook and implications for the farm households livelihoods.
4.1 Crop productionOverall, annual crops average 83% of the farm area (Table 13). Fallow/pasture was reported
by 36% of the households and occupying 13% of the farm area overall, albeit being more
common in the Uganda and Tanzania study areas where the average farm size is relatively
large. Perennial crops are relatively uncommon in the drought-prone study areas, reported byabout a fifth of the households and occupying 4% of the farm area overall, and markedly
concentrated in the Kenya and Uganda study areas (e.g. coffee:, 20% of households Kenya
and13% in Uganda)
The study was targeted at maize growing drought prone districts in eastern Africa. The
survey confirms the importance of maize in the study area, with maize cultivation near-
universal and the maize area averaging 1 ha per household corresponding to some two-fifths
of the farm area (Table 13). Maize thereby occupies about half the annually cropped area. In
Kenya, maize intercropping prevails and intercrops include legumes, other cereals and roots
and tubers.
Across the study areas, 75% of the surveyed farm households grow at least one legume,
which account for 19% of the farm area. Legumes include:
- Beans (61% of households overall, albeit variously reported - Kenya 93%, Ethiopia69%, Uganda 23% and Tanzania4%);
- Groundnut (17% of households overall, Uganda 77% and Tanzania 36%);- Cowpea (10% of households overall, Kenya 25%, Uganda 7%); and- Pigeon pea (Kenya 47%).
About a third of the surveyed farm households reported other cereals and a similar share of
roots and tubers, which respectively accounted for 11% and 8% of the farm area. Other
cereals include:
- Sorghum (9% of households overall, Uganda 29%, Tanzania 24%);- Millet (9% of households overall, Uganda 37%, Tanzania 17%);- Rice (2% of households overall, Tanzania 11%),
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- Teff (Ethiopia only, 55%);- Wheat (Ethiopia only, 3%).
Roots and tubers include:
- Sweet potato (26% of household overall, Uganda 71%, Ethiopia 36%);- Cassava (5% of households overall, kenya11%; Uganda 3%); and- Yam (UG 91%).
Only 14% of households reported other annual crops accounting for 3% of the farm area,
including vegetables (Kenya 12%; Uganda 4%), sunflower (Tanzania 28%), sesame
(Tanzania 13%) and cotton (Uganda 12%).
Table 13. Selected land use indicators of surveyed farm households in the drought prone study
areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean (sd)
Maize area (ha) 1.26 b 0.58 a 1.02 b 1.30 b 1.00 (1.19)
Share maize area intercropped (%,
n=987)
0 a 80 b 0 a 1 a 28 (44)
Farm area share (%) planted to:
- Maize 47 c 43 b 25 a 41 bc 41- Other cereals 19 c 1 a 9 b 18 c 11- Legumes 17 c 31 d 11 b 7 a 19- Roots and tubers 9 c 4 b 22 d 0 a 8- Other annual crops 0 a 3 b 3 b 10 c 3- Annual crops (subtotal) 93 c 81 b 70 a 76 ab 83- Perennial crops 1 b 8 c 7 c 0 a 4- Fallow/pasture 6 a 11 b 23 c 24 c 13
Share farms reporting (% hh):
- Maize 97 100 96 91 97- Other cereals 58 7 45 47 37- Legumes 69 94 81 39 75- Roots and tubers 35 16 94 1 32- Other annual crops 2 14 19 38 14- Perennial crops 6 32 40 1 19- Fallow/pasture 25 32 58 51 36
Notes: sd: standard deviation; n: sample size (=1019 unless otherwise indicated); all ps (Welch or Chi-square)
highly significant (0.00). Data preceding different letters differ significantly Tamhane's T2 (significance level:
0.10), within row comparison.
The total cultivated area was determined by a combination of food needs, cash availability
for inputs and seed availability (Table 14), with food needs being particularly common in
Kenya and Tanzania. There was no clear trend in terms of the households maize area in the
study areas (Table 15). A constant maize area was primarily associated with a constant farm
size, whereas rainfall was the prime determinant in case of maize area changes followed by
resource availability indicators (Table 15).
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Table 14. Factors determining cultivated area of surveyed farm households in the drought prone
study areas of eastern Africa (% of hh reporting, n=983).
Ethiopia Kenya Uganda Tanzania Sample mean
Food needs 18 91 48 75 56
Cash availability for inputs 77 44 43 45 56
Seed availability 55 64 27 58 54
Family labor availability 42 46 43 42 44
Cash availability to hire labor 42 20 54 30 35
Expected harvest grain prices 7 24 40 15 19
Current grain prices 8 3 24 7 8
Other 0 4 16 4 4
Notes: multiple response for household listing up to three factors; n: sample size. Statistical significance not relevant as
multiple response.
Table 15. Trend maize area and associated factors for surveyed farm households in the drought
prone study areas of eastern Africa (% of hh reporting).
Ethiopia Kenya Uganda Tanzania Sample mean
Trend maize area (n=989, p.=.00)
- Increase 41 17 45 36 32- Constant 35 58 9 28 38- Decrease 25 25 46 37 30
Factors associated with increase (n=322)*
- Better rainfall 10 65 35 75 36- Enough labor 25 8 21 4 18- Enough seed 27 12 7 8 17- Interested in expanding 19 2 16 8 13- Enough cash for inputs 11 3 4 6 7- Enough land to expand 3 10 9 0 5- Other 4 0 7 0 3
Factors associated with constant (n=390)*
- Land size unchanged 56 56 62 45 55- Rainfall unchanged 11 24 15 2 17- Labor force unchanged 2 4 15 36 7- Yield 7 4 0 0 5- Other 25 11 8 17 16
Factors associated with decrease (n=295)*
- Poor rainfall 21 56 65 55 47- Reduced cash for inputs 30 1 1 5 11- Reduced labor force 4 8 17 15 10- Reduced land available 23 5 6 0 10- Inadequate seed 7 6 7 2 6- Other 15 24 3 24 16
Notes: n: sample size; p: statistical significance (Chi-square). *Statistical significance not relevant as too many empty cells.
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Table 18. Selected livestock indicators of surveyed farm households in the drought prone study
areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, n)
Herd size (# of heads)
- Cattle 5.5 b 3.3 a 6.6 b 3.1 a 4.5 (8.2)- Small stock* 5.2 c 3.9 b 5.4 c 2.2 a 4.3 (7.0)- Poultry** 3.8 a 11.4 b 17.3 b 4.9 a 8.5 (24.3)- Transport animals 1.1 c 0.2 b 0.0 a 0.0 a 0.5 (1.0)
Reported herd value (US$) 584 a 723 a 1,403 b 562 a 752 (1392, 947)
Share of farms reporting (%hh):
- Improved cattle 8 17 5 1 9- Local cattle 73 68 74 18 63- Any cattle 74 74 75 18 66- Goats 56 73 67 16 58- Sheep 33 12 14 4 19- Pigs 1 0 46 4 8- Any small stock* 69 74 81 21 65- Poultry** 56 87 88 53 71- Transport animals 57 11 1 0 25- Any livestock (any of
above)
95 97 97 63 91
Livestock changes survey year (% hh
reporting any)
- Consumption 20 54 66 22 39- Sales 37 54 63 26 45- Purchases/receipts 17 17 34 6 18
Notes: sd: standard deviation; n: sample size =1019 unless otherwise indicated; all ps (Welch or Chi-square) highly
significant (0.00). Data preceding different letters differ significantlyTamhane's T2 (significance level: 0.10), within row
comparison. * goat, sheep, pigs. **chicken, duck, fowl, pigeon
4.4 Off- farm incomeThe surveyed farm households further complement their livelihood portfolio with off-farm
income sources. Some 82% of the surveyed farm households reportedly had some of their
household members engaged in off-farm income generating activities. Such off-farm income
sources were markedly more common (near universal) in Ethiopia and Kenya, where they
involved more than half the household members and most commonly related to farm labor
(Table 19). Petty trading was the next most common off-farm income source based on
household member activities, and actually the most commonly reported source in Ugandaand Tanzania whereas it was virtually absent in Ethiopia. An array of other off-farm income
sources was reported based on household member activities, particularly in Kenya and
Uganda, including some relatively skilled and non-agricultural endeavors (Table 19).
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Table 19. Selected off-farm income indicators of surveyed farm households in the drought prone
study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean (sd, p)
Off-farm activities
- Any hh memberengaged (% of hh)
99 97 48 38 82
- % hh membersengaged (%)
67 c 53 b 11 a 16 a 46 (31)
Off-farm activity type (% of hh
based on any hh members)
- Farm labor 99 78 2 14 65- Petty trading 1 28 19 20 16- Teaching 1 7 7 0 4- Masonry/carpeting 2 11 3 3 5- Nursing 1 1 3 1 1 (nr)- Arts & craft 0 10 0 2 4- Driving 0 4 1 1 2- Fitting mechanic 0 4 4 1 2- Other 1 16 20 2 9
Off-farm cash income (% of hh)
- Hh labor based 1 35 78 40 47 52- Other source 2 13 68 17 5 32- Any off-farm cash
income
45 96 53 50 65
Notes: sd: standard deviation; n: sample size =1017; all ps (Welch or Chi-square) highly significant (0.00)
unless otherwise indicated (nr: not relevant [empty cells]). Data preceding different letters differ significantly
Tamhane's T2 (significance level: 0.10), within row comparison. 1 Includes petty trading, paid employment or
self employed. 2 Includes remittances or other off-farm income.
The foregoing off-farm indicators are based on the off-farm activities as reported for
individual household members aggregated to the household level. The reported sources of
household cash income (see next section) however provide a somewhat different
categorization. Based on these reported cash income sources, two-thirds of the surveyed
farm households (overall) reported some sort of off-farm cash income, and half the
households (overall) reported any labor related off-farm cash income - such as petty trading,
paid employment or self employed. Off-farm cash income sources were nearly universally
reported by the surveyed farm households in Kenya, against about half elsewhere (Table 19).
4.5 I ncome and expenditure profil es of householdsThis study sought to establish cash income sources and expenditures of the surveyed farm
households during the survey year. The monetary responses should however be interpreted
with the necessary caution in view of the sensitivity of the data and the survey being a single
visit survey. It should also be recalled that this relates to cash only, whereas a substantial
share of household income is in-kind, particularly the self-produced crops which are to a
large extent consumed over the year by the household to meet daily food needs. Still, the
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Table 20. Reported cash income sources for surveyed farm households in the drought prone study
areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, p)
Sources (% hh reporting)
- On-Farm cash incomeo Crop sales 89 60 96 79 79o Fruit/vegetable sales 7 53 11 0 23o Livestock/fish sales 32 53 66 13 42o Any on-farm 94 87 98 82 91
- Off-farm cash incomeo Petty trading 5 39 22 26 22o Paid employment 14 40 10 11 22o Self employed 21 23 10 13 19o Remittances 2 62 12 5 25o Other 12 18 6 0 12o Any off-farm 45 96 53 50 65
Reported hh cash income (US$ pa)
- Per household 376 a 1479 b 1217 b 399 a 894 (1511)- Per capita 58 a 285 c 157 b 83 ab 157 (313, 962)
Sources (% of reported income)
- On-Farm cash incomeo Crop sales 61 b 13 a 55 b 60 b 43o Fruit/vegetable sales 3 b 11 c 3 b 0 a 5o Livestock/fish sales 12 a 11 a 19 b 8 a 12o Sub-total 76 b 35 a 77 b 67 b 61
- Off-farm cash incomeo Petty trading 2 a 11 bc 8 b 16 c 8o Paid employment 6 a 24 b 4 a 8 a 12o Self employed 11 b 8 ab 5 a 7 ab 8 (.01)o Remittances 0 a 19 c 3 b 1 b 7o Other 5 b 4 b 3 b 0 a 4o Sub-total 24 a 65 b 23 a 33 a 39
Notes: sd: standard deviation; n: sample size = 964 unless otherwise indicated; all ps (Welch or Chi-square)
highly significant (0.00) unless otherwise indicated. Data preceding different letters differ significantly
Tamhane's T2 (significance level: 0.10), within row comparison.
The surveyed farm households reported a range of expenditure categories, typically including
clothing, fuel and medical expenses (Table 21). Although these are farm households, food
expenditures were similarly widely reported. Annual reported cash expenditure averaged
US$640 per surveyed farm household, with a marked regional variation similar to income(Table 21). Overall, food expenditure made up the largest expense category (37% overall,
and about half in Kenya and Tanzania), despite these being farm households. This was
followed by clothing (15%), education (13%), medical (9%) and array of smaller categories
(Table 21). Overall a third of the surveyed farm households thereby was a net food buyer
(i.e. reported expenditures on food exceed reported on-farm cash income), whereas this
amounted to three-fifths in Kenya and Tanzania study areas (Table 21).
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Overall, surveyed farm households generally rated improved maize (open pollinated variety
[OPV] or hybrid) as relatively profitable and roots and tubers as least profitable, with local
maize, other cereals and legumes in-between. There are however some marked regional
variations (Table 22) typically associated with the underlying cropping pattern. Profitability
of local maize was generally rated relatively medium, but scored favorably in Kenya where it
is widely grown (see next chapter). In contrast, improved OPVs scored relatively high inUganda and Tanzania and hybrids in Ethiopia and Kenya, again in line with their use. The
profitability of other cereals scored relatively high in Ethiopia, associated with teff
cultivation.
Table 22. Selected crop profitability indicators for surveyed farm households in the drought prone
study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, n, p)
Profitability index (0 least 1 mostprofitable)
- Local maize .57 a .75 b .50 a .53 a .64 (.35, 655)- Improved OPV maize .79 a .71 a .86 b .81 ab .81 (.27, 429, .02)- Hybrid maize .87 b .78 a .65 ab .58 ab .78 (.27, 205, .03)- Other cereals .74 c .32 a .41 a .58 b .64 (.31, 350)- Legume crops .65 b .67 b .50 a .75 b .64 (.24, 789)- Roots & tubers .57 b .26 a .47 b - .40 (.31, 243)
Profitability trend (-1 decreasing +1 increasing)
- Local maize .1 a .2 b .3 b .2 ab .1 (.8, 654)- Improved OPV maize .3 a .4 ab .8 b .4 a .5 (.8, 429)- Hybrid maize * .6 .4 .4 .3 .4 (.8, 202, ns)- Other cereals .6 bc .1 ab .7 c .3 a .6 (.7, 348)- Legume crops .5 b .4 a .6 b .6 ab .5 (.6, 791)- Roots & tubers .5 ab .1 a .6 b - .4 (.6, 245)
Plans to enhance crop profitability(% hh) (n=364) (n=340) (n=146) (n=109) (n=959)
- Increase production 67 92 98 74 81- Reduce costs 13 36 9 3 19- Grow profitable crops 49 35 21 7 35- Diversify 15 35 29 17 24- Other 10 2 11 11 7
Notes: sd: standard deviation; n: sample size; all ps (*ANOVA, Welch or Chi-square) highly significant (0.00) unlessotherwise indicated (ns: not significant). Data preceding different letters differ significantly Tamhane's T2 (significancelevel: 0.10), within row comparison.
Overall, the surveyed farm households generally perceived a positive profitability trend for
the various crop types (Table 22). An exception was the profitability trend for local maize,
which was generally perceived as static and even as declining in Ethiopia. Increasing
production was reported as the main plan to enhance crop profitability, followed by growing
profitable crops, with less than a quarter reporting diversification or cost reduction (Table
22).
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Table 25. Crop yield risk indicators for surveyed farm households in the drought prone study areas
of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, n, p)
Yield riskiness index (0 least 1
most risky)
- Local maize .78 b .72 b .69 ab .61 a .71 (.32, 683)- Improved OPV maize .77 b .67 b .70 b .31 a .69 (.33, 431)- Hybrid maize .62 .65 .55 .56 .63 (.31, 226, ns)- Other cereals .67 b .40 ab .51 a .49 a .61 (.28, 360)- Legume crops .79 d .72 c .65 b .43 a .71 (.25, 805)- Roots & tubers .65 b .36 a .33 a .50 ab .35 (.27, 249)
Yield risk coping strategies used (%
hh, n=997)
- Agriculturaldiversification
55 91 50 75 70
- Asset accumulation 44 27 12 1 27- Non-ag. diversification 16 27 17 25 21- Program participation 11 4 2 1 6- Other 12 6 83 9 20
Yield risk information sources (%
hh, n=954)
- Other farmers 40 94 59 42 63- Extension 59 14 24 48 36- Radio/newspaper 19 8 26 20 16- NGOs 3 2 8 1 3- Field days 1 1 5 0 2
Notes: n: sample size; all ps (Welch or Chi-square) highly significant (0.00) unless otherwise indicated (ns: not significant).
Data preceding different letters differ significantlyTamhane's T2 (significance level: 0.10), within row comparison.
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Table 26. Crop price risk indicators for surveyed farm households in the drought prone study areas
of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, n, p)
Price riskiness index (0 least 1
most risky)
- Local maize .80 c .73 b .80 c .56 a .73 (.33, 640)- Improved OPV maize .73 c .57 b .83 bc .31 a .71 (.33, 411)- Hybrid maize * .46 a .66 b .73 b .80 b .62 (.34, 220)- Other cereals .46 .25 .45 .52 .46 (.29, 357, ns)- Legume crops .77 c .61 b .40 a .44 a .62 (.30, 786)- Roots & tubers .64 c .28 a .40 b - .37 (.31, 250)
Price risk coping strategies used (%
hh, n=845)
- Asset accumulation 80 96 9 89 74- Program participation 25 18 5 0 18- Other 18 22 99 16 33
Price risk information sources (%hh, n=947)
- Other farmers 47 92 68 35 65- Extension 31 17 14 23 22- Radio 21 12 32 6 18- Other (including
combinations)
28 6 30 50 23
Notes: n: sample size; all ps (*ANOVA, Welch or Chi-square) highly significant (0.00) unless otherwise indicated (ns: not
significant). Data preceding different letters differ significantlyTamhane's T2 (significance level: 0.10), within row
comparison.
4.7 Out look of livelihoodsThe study targeted the maize producing drought prone areas. It is therefore not surprising
that the surveyed farm households nearly universally reported at least one crop failure due to
drought during the last decade (>99% overall, with the lowest average being 96% Tanzania).
The number of crop failures due to drought during the last decade averaged 3, with the
lowest average being reported in Kenya and Tanzania (2.6-2.8) and the highest in Ethiopia
and Uganda (3.3-3.7 - Table 27). What is more, the site selection thereby proved robust in
each of the countries as the study targeted areas with a probability of failed season of 20-
40%. Still, although the survey averages fell within the target range, individual responses
oscillated widely (from 0 to 10). About half (46% overall) of the surveyed farm households
had been compelled to sell off some assets during the survey year due to difficulties (i.e. for
some reason or another, not necessarily due to drought), a fraction that was relatively similar
across the study sites (Table 27). The need to buy food was the main reason (48% overall)
for those that had to sell assets (Table 27).
Somewhat more than half (58% overall) of the surveyed farm households considered
themselves as food secure during the survey year (Table 27). The remaining 42% averaged
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four months without adequate food, a duration that was again relatively similar across the
study sites (Table 27). The actual timing of food shortage varied, typically associated with the
incidence of rainse.g. falling during the main rains in the Ethiopia and Tanzania study
sites. The surveyed farm households reported an array of food shortage coping mechanisms,
the most frequent being reducing other expenditures (38% overall), working more off-farm
(30%), selling small animals (27%) and selling cattle (24% - Table 27).
Table 27. Selected risk indicators for surveyed farm households in the drought prone study areas of
eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, n, p)
# years out of 10 crop failure due to
drought 3.3 b 2.6 a 3.7 b 2.8 a 3.0 (1.8, 855)
Whether compelled to sell assets in
survey year (% hh) 50 45 47 40 46 (968, ns)
Reason for selling assets (% hh selling)
(n=190) (n=151) (n=70) (n=70) (n=481)- To buy food 23 57 64 80 48- Family events 41 9 6 1 20- To pay debt 5 8 21 6 9- Other 31 26 9 13 23
Hh food secure during survey year 46 59 78 63 58 (49, 1002)
# months without adequate food 3.9 4.3 4.1 3.8 4.0 (2.2, 426, ns)
Time inadequate food (month) Jul-Sep Aug,
Dec-Jan
Apr-Jun Jan-Mar
Food shortage coping mechanisms (%
hh) * (n=331) (n=334) (n=139) (n=125) (n=929, nr)
- Reducing other expenditure 10 83 33 0 38- Working more off-farm 17 41 32 34 30- Selling small animals 27 28 47 3 27- Selling cattle 53 7 12 6 24- Reducing food intake 5 19 19 4 12- Working at Food-for-work 9 10 6 34 12- Selling assets 14 10 23 1 12- Receiving food aid 4 5 4 1 4- Other 16 4 46 18 17
Notes: sd: standard deviation; n: sample size; all ps (Welch or Chi-square) highly significant (0.00) unless otherwise
indicated (ns: not significant; nr: not relevant [multiple response]). Data preceding different letters differ significantly
Tamhane's T2 (significance level: 0.10), within row comparison.* Multiple responses possible (3) column % does notsum to 100%.
Drought (71% overall) and food security issues (61%) also prevailed as the most widely
reported threats to the livelihoods of the surveyed farm households (Table 28). Health issues
were reported as a threat by half the households, followed by an array of other threats that
include poverty (15%), pest and diseases (13%) and insecurity (10% - Table 28). Other
weather related threats included erratic weather/rain/climate (including climate change, 6%),
floods (4%) and excess rains (2%).
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Table 29. Reported constraints to livelihood improvement for surveyed farm households in the
drought prone study areas of eastern Africa (% households reporting).
Ethiopia Kenya Uganda Tanzania Sample mean
(n=363) (n=343) (n=144) (n=151) (n=1001)
Health issues 40 38 29 31 36
Input issues 39 53 26 3 36
(Output) Market issues 10 34 73 40 32Agricultural productivity 18 29 14 27 23
Drought 27 12 23 2 17
Land/Soil quality issues 5 37 10 5 17
Land availability issues 33 3 17 1 16
Erratic weather/rain/climate 25 3 2 8 11
Poverty 19 13 1 0 11
Transport/infrastructure issues 1 21 14 11 11
Capital/assets issues 2 0 4 54 10
Farm equipment issues 0 0 1 48 7
Finance issues 9 3 19 1 7
Education issues 10 5 1 1 5
Food security issues 13 0 2 2 5
Crop failure/production risk 0 13 0 0 5
Other issues 27 18 50 1 23
Note: n: sample size. Listed here are the categorized responses to an open question of the 3 most serious constraints,
retaining categories that were named at least by 4.5% of households across countries, with remainder lumped under others.
Multiple responses possible (3) column % does not sum to 100%.
The surveyed farm households were also requested to enlist the most serious shocks they
had been affected by during the last decade (Table 30). As expected, these overlap in part
with the reported threats to their livelihoods reported earlier (Table 28). Drought again
prevailed as the most widely reported shock (89% overall), but this time followed by
floods/excess rain (38%) and plant pests/diseases (34%). The health status and even deathof the breadwinner/wife was another common shock (23% and 10% respectively). An array
of other shocks was reported, including erratic rain (14%), price shocks (maize & input
prices, 21% each), livestock shocks (death/loss and disease, 18% and 14% respectively) and
damage to crops by animals (including wildlife) and birds (17% and 8% respectively - Table
30).
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Table 30. Reported shocks by surveyed farm households in the drought prone study areas of
eastern Africa (% households reporting amongst 5 most serious over last decade).
Ethiopia Kenya Uganda Tanzania Sample mean (p)
(n=359) (n=323) (n=144) (n=133) (n=959)
Drought 96 77 94 98 89
Flood/excess rain 8 52 58 65 38
Plant pests/diseases 20 37 47 50 34
Illness/disability breadwinner/wife 23 15 35 28 23
Maize price (drop) 12 19 48 22 21
Input price (increase) 25 24 21 3 21
Livestock death/loss 19 24 16 4 18
Animal damage to crops 16 11 17 36 17
Livestock disease 16 9 33 5 14
Erratic rain 8 24 9 10 14
Weeds 18 2 8 13 10
Death breadwinner/wife 8 13 2 9 9
Birds 8 2 0 32 8
Theft 7 6 8 5 6 (ns)
Frost/hailstorm 3 1 16 0 4
Conflict 3 2 10 0 3
Fire 5 1 1 2 3
Other staple crop price (drop) 3 2 13 1 3
Other 9 5 10 0 7
Notes: n: sample size; all ps (Chi-square) highly significant (0.00), unless otherwise indicated (ns: not significant).
Agriculture remains the pivot in the livelihood portfolio of farm households. Despite their
location in drought prone areas, the large majority of the surveyed farm households (80%
overall) thereby sought to increase agricultural production as their preferred strategy to
enhance their livelihoodswith only a negligible few considering an exit from agriculture
(Table 31). An array of complementary strategies was reported by the surveyed farm
households with some regional variation, including increasing food security (50% overall,
especially common in Tanzania), improving educational status (31%), increasing land
ownership (26%) and improving health status (25% - Table 31).
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Table 31. Preferred strategies to enhance livelihoods for surveyed farm households in the drought
prone study areas of eastern Africa (% households reporting amongst their 3 priorities).
Ethiopia Kenya Uganda Tanzania Sample mean (p)
(n=366) (n=332) (n=145) (n=149) (n=992)
Increase agricultural production 76 78 89 86 80
Increase food security 38 53 56 68 50
Improve education 41 29 19 26 31
Increase land ownership 36 24 15 19 26
Improve health 30 27 18 14 25
Increase hh assets 23 12 22 3 16
Increase income/reduce income risk 14 14 24 12 15 (.01)
Reduce agricultural risk 8 16 33 14 15
Reduce marketing risk 6 6 17 25 11
Increase job opportunities/earn wages 7 16 3 11 10
Improve social status 2 8 2 7 5
Exit from agriculture 0 0 1 1 0 (ns)
Notes: n: sample size; all ps (Chi-square) highly significant (0.00), unless otherwise indicated (ns: not significant).
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5 Maize product ion and t echnology useCrop and particularly maize production plays a pivotal role in the livelihoods of the surveyed
farm households in the drought prone areas of eastern Africa as reviewed in the previous
chapter. The present chapter characterizes maize production further with a particular
emphasis on technology use in general and seed use in particular. The chapter ends with ananalysis of the factors affecting improved maize seed purchases.
5.1 Knowledge of maize varieties and desired att ribut esSurveyed farm households enlisted 2.8 known maize varieties per household on average,
including 1 local maize variety, 0.8 improved Open Pollinated Varieties (OPVs) and 1 hybrid
(Table 32). This relatively even distribution across the three distinguished maize seed types
however masks some marked regional variations. Particularly striking is the contrast between
the surveyed households in Uganda and those in Kenya, with a marked contrast in terms of
knowledge of OPVs and hybrids, in line with the prevailing seed availability in therespective countries. Knowledge of local varieties was relatively evenly distributed over the
countries, although the surveyed households in Uganda also enlisted the most local varieties
(Table 32).
The surveyed farm households were asked about the perceived drought tolerance of the
known varieties. Overall, the perceived tolerance was somewhat higher for known hybrids
compared to known local maize varieties, with known OPVs in-between (Table 32).
However, these perceptions again showed marked regional differences. Striking is that the
perceived drought tolerance of known OPVs were rated highest in Uganda (particularly
compared to known local there), but lowest in Ethiopia (Table 32).
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Table 32. Selected maize varietal indicators of surveyed farm households in the drought prone
study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, n, p)
Share of farms reporting known maize
varieties (% hh) 95 99 98 91 96
# maize varieties known (per hh,
n=982)
- Local varieties 1.0 b 1.0 b 1.4 c 0.8 a 1.0 (0.7)- Improved OPVs 1.1 c 0.3 a 1.5 d 0.6 b 0.8 (0.9)- Hybrids 0.4 b 2.1 d 0.2 a 1.0 c 1.0 (1.3)- Total # 2.5 a 3.3 b 3.1 b 2.4 a 2.8 (1.5)
Perceived drought tolerance index
known varieties (0 low - 1 high) (n*=739) (890,.01) (402) (219,ns) (n*=2250)
- Local varieties .53 y .43 x .46 x .46 x .48 x- Improved OPVs .36 x .55 y .67 y .57 x .50 xy- Hybrids .64 z .51 y .51 xy .58 x .54 y
Notes: sd: standard deviation; n: sample size (=1019 households, unless otherwise indicated); all ps (Welch or Chi-square)highly significant (0.00) unless otherwise indicated (ns: not significant). Data preceding different letters differ significantly
Tamhane's T2 (significance level: 0.10), abcd - within row comparison; xyz - within column comparison. n*: number of
known varieties reported by surveyed households (758 households reporting local varieties; 478 improved OPVs and 425
hybrids overall).
Surveyed farm households were queried as to what they perceived as the best known maize
variety for local, improved OPV and hybrid (Table 33) and to make subsequent pair-wise
contrasts for a number of attributes (Table 34).
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Table 35. Desired characteristics of ideal maize variety for surveyed farm households in the
drought prone study areas of eastern Africa (% of households).
Ethiopia Kenya Uganda Tanzania Sample mean
(n=358) (n=345) (n=146) (n=147) (n=996)
Yield potential 71 71 62 67 69
Early maturity 69 41 68 44 56
Drought tolerance 30 49 53 55 43
Grain size 15 15 18 39 19
Cob size 14 8 24 22 14
Pest/disease resistance 12 12 12 23 14
Performance under poor rainfall 4 31 7 1 14
Number of cobs per plant 14 17 14 3 13
Cob filling 14 11 3 17 12
Performance on poor soils 11 14 8 2 10
Storage pest resistance 8 6 1 7 6
Yield stability 2 13 4 1 6
Resistance to lodging 13 1 3 0 5
Grain color 3 1 3 7 3
Other 9 8 19 6 10
Notes: multiple response for household listing up to three most desired characteristics; n: sample size.
Table 36. Factors influencing maize varietal choice for surveyed farm households in the drought
prone study areas of eastern Africa (% of households).
Ethiopia Kenya Uganda Tanzania Sample mean
(n=351) (n=296) (n=146) (n=99) (n=892)
Yield potential 80 86 79 76 81
Maturity period 79 45 68 42 62
Drought resistance 32 72 60 61 53
Pest/disease resistance 12 21 16 44 19
Performance on poor soils 15 10 12 4 12Storage pest resistance 12 17 2 5 11
Cob size 7 3 25 31 11
Taste of meal 21 2 12 2 11
Number of cobs per plant 15 5 14 2 10
Cost of seed 5 0 7 4 4
Other 6 34 3 3 15
Notes: multiple response for household listing up to three factors; n: sample size.
Reasons for not using any of the maize varieties known to the households typically revolved
around grain yield (particularly prominent for non-use of local maize varieties), expensive
seed (particularly for non-use of hybrids) and non-availability of seed (most common for
non-use of OPVs, although also reported by a fifth to a fourth for the non-use of the two
other seed types - Table 37).
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Table 37. Reasons for not using known maize varieties by seed type for surveyed farm households
in the drought prone study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
Known hybrids (% hh) (n=33) (n=144) (n=10) (n=54) (n=241)
- Poor grain yield 36 35 20 13 29- Poor grain storage 3 2 0 6 3- Poor grain price 0 0 10 0 0- Expensive seed 30 70 20 54 59- Poor food taste 0 1 0 2 1- Seed not available 18 23 40 43 27- Other 36 40 20 19 34
Known improved OPVs (% hh) (n=76) (n=32) (n=34) (n=37) (n=179)
- Poor grain yield 32 47 38 19 33- Poor grain storage 4 0 3 0 2- Poor grain price 3 0 3 0 2- Expensive seed 26 19 9 38 24- Poor food taste 1 0 9 3 3- Seed not available 34 13 53 59 39- Other 38 25 18 8 26
Known local varieties (% hh) (n=148) (n=24) (n=62) (n=28) (n=262)
- Poor grain yield 67 67 69 57 67- Poor grain storage 2 0 2 4 2- Poor grain price 1 0 5 0 2- Expensive seed 3 8 0 7 3- Poor food taste 2 0 2 0 2- Seed not available 14 4 47 18 21- Other 43 21 31 14 35
Notes: multiple response for household for known specific maize varieties not used during survey year; n: sample size.
5.2 Maize seed use by farm householdsThe surveyed farm households planted some 35 kg of maize seed per year overall, although
this oscillated around the 20 kg for Tanzania and about 50 for Ethiopia (Table 38). Although
the surveyed farm households knew 2.8 maize varieties on average, they actually only used
1.3 varieties in the survey yearan average that was similar in the two preceding years and
somewhat higher in Uganda and Kenya (Table 38). Except in Ethiopia, the portfolio of
maize varieties used by the surveyed farm households typically featured two-three prominent
varieties in each study area (Table 39). In the case of Uganda three improved Longe varieties
were most prominent, being grown by at least a quarter of the households, whereas inTanzania local varieties were most widely reported. Kenya presents an interesting contrast,
with the portfolio being dominated by one popular local maize and a third of the households
reporting one particular hybrid. In Ethiopia, the most popular variety was only grown by
16% of the surveyed households, with the top spot being shared between a local variety and
a hybrid, followed by a range of other varieties (Table 39).
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Table 38. Selected maize seed indicators for surveyed farm households in the drought prone study
areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean
(sd, n)
Maize seed planted (kg)
- Survey year 49 c 29 b 31 b 19 a 35 (43, 1004)- Preceding year 48 c 30 b 31 b 21 a 34 (43, 881)- 2 years back 45 b 29 a 27 a 22 a 33 (43, 732)
# of maize varieties planted
- Survey year 1.2 a 1.5 b 1.4 b 1.1 a 1.3 (.6, 996)- Preceding year 1.1 a 1.4 b 1.4 b 1.1 a 1.3 (.5, 919)- 2 years back 1.1 a 1.3 b 1.3 b 1.1 a 1.2 (.5, 787)
Seed use in survey year (% hh)
- Local varieties 36 90 37 67 59 (1018)- Improved (OPV or H) 78 45 83 40 62 (1018)
o Improved OPV 59 2 81 20 38 (959)o Hybrid 23 41 6 25 27 (959)
Seed share survey year (%)- Local varieties 31 a 78 c 26 a 64 b 51 (46, 1018)- Improved (OPV + H) 69 c 22 a 74 c 36 b 49 (46, 1018)
o Improved OPV 51 c 1 a 71 d 18 b 32 (45, 959)o Hybrid 20 b 19 b 3 a 19 b 17 (34, 959)
Years of growing specific maize
variety
- Local varieties 5.9 a 11.8 b 11.5 b 12.7 b 9.4 (8.8, 418)- Improved OPVs 3.0 b 1.7 a 4.3 c 4.6 c 3.5 (2.8, 410)- Hybrids * 2.5 2.5 3.2 2.6 2.5 (1.8, 342, ns)- Any maize variety 4.0 a 3.8 a 7.7 b 9.0 b 5.3 (6.1, 799)
Years of recycling specific maize
variety
- Local varieties 4.6 a 5.3 ab 6.5 ab 8.4 b 6.0 (7.6, 397)- Improved OPVs 2.3 c 0.3 a 1.6 b 3.5 c 2.0 (1.9, 363)- Hybrids 1.8 b 0.5 a 0.4 a 1.9 b 1.0 (1.6, 271)- Any maize variety 3.0 b 1.6 a 3.6 bc 5.7 c 3.2 (5.1, 717)
Notes: sd: standard deviation; n: sample size; all ps (Welch, *ANOVA or Chi-square) highly significant (0.00) unless
otherwise indicated (ns: not significant). Data preceding different letters differ significantly Tamhane's T2 (significance
level: 0.10), within row comparison.
Overall, improved and local maize varieties were about equally common among the surveyed
farm householdsbe it in terms of households reporting their use (respectively 62% and
59% overall) or their share in reported seed use (49% and 51% - Table 38). However, localvarieties are particularly widespread in the Kenya and Tanzania study areas, being reported
by about a third of the surveyed households in Ethiopia and Uganda (Table 38).
Interestingly, the Kenya study thereby combines the highest use rate of local varieties with
the highest penetration of hybrids (41% of households) and a relative absence of (improved)
OPVs. In contrast, the use of OPVs is widespread in the Ethiopian and Ugandan study areas
(Table 38).
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Farmers have been growing the maize varieties they use for an average of five years this
being somewhat shorter in the Ethiopian and Kenyan study areas (Table 38). In line with
expectations, local varieties have the longest durations of use (9.4 years overall), followed by
OPVs and hybrids (Table 38). On average, surveyed farmers reported recycling their maize
varieties for 3.2 years - this duration again being longest for local varieties as expected (Table38). However, even hybrids were reportedly recycled for an average of one year, a practice
particularly common in the Ethiopian and Tanzanian study areas (Table 38). OPVs were
reportedly recycled for an average of two years (Table 38). Recycling of maize seed is indeed
commonplacewith 70% of surveyed households (overall) reportedly retaining some of
their maize harvest as seed, amounting to 4% of the maize produced on average (see earlier
Table 16 - page 19).
Table 39. Reported maize varieties used in survey year by surveyed farm households in the
drought prone study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania(n=357) (n=343) (n=144) (n=145)
Shaye* (16%)
BH540 (16%)
Katumani (14%)
Hawasa (14%)
Mirtzer (10%)
Limati (8%)
Pioneer (8%)
Habasha* (8%)
Malkasa (7%)
Nano* (4%)
Marid* (3%)Hararge* (2%)
Key Maize (2%)
Other (8%)
Kikamba* (88%)
Pioneer 3253 (33%)
Duma 41 (15%)
Pan 67 (4%)
Duma 43 (2%)
Katumani (2%)
DK8031 (1%)
Kangundo* (1%)
Other (7%)
Longe 5 (35%)
Longe 4 (29%)
Longe 1 (28%)
Ekwakoit* (13%)
Mweraigoro* (6%)
Egwanapa* (6%)
Munandi* (5%)
Kasoli Muganda* (4%)
Longe 2H (4%)
Other (10%)
Asila* (34%)
Local* (34%)
Seedco (14%)
Kilima (10%)
Cargil (6%)
Ilonga (6%)
Staha (3%)
Other (3%)
Note: % of households reporting use of the maize variety during the survey year. Listed here are varieties that were named
at least 5 times by country, with remainder lumped under others. Column % do not add up to 100% as multiple responses
(up to 4 per season) possible. * Primarily reported as local varieties
Overall, 70% of the surveyed farm households reported having used improved maize
varieties (OPVs or hybrids) during the five years preceding the survey, with about three
quarters of users reporting continuous use (Table 40). Lack of money was the main reasons
for those not using any improved varieties, followed by them being satisfied with existingvarieties and not having heard/seen any better varieties (Table 40). Lack of money and
satisfaction with existing varieties were also reported as the main reasons for not using
improved varieties in the survey year (Table 40), whereas non-continuous use of improved
varieties was primarily associated with non-satisfaction and again lack of money (Table 40).
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Table 40. Selected improved maize seed use indicators for surveyed farm households in the
drought prone study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzania Sample mean (n)
Planted any improved maize variety
last 5 years (%) 87 56 86 49 70 (1019)
Continuous use over last 5 years (%
hh, for those that planted) 78 66 94 75 78 (640)
Reasons for not using any improved
varieties (% hh) (n=46) (n=132) (n=20) (n=67) (n=265, nr)
- Lack of money 35 40 35 36 38- Satisfied with existing 7 33 20 15 23- Not heard/seen better
varieties 17 23 25 13 20
- Cannot get the seeds 15 3 20 34 14- Other 26 1 1 5
Reasons for not continuously using
improved varieties (% hh) (n=37) (n=44) (n=6) (n=13) (n=100, nr)
- Not satisfied withperformance 30 43 33 38 37- Lack of money 16 48 50 31 34- Preferred seed no longer
available
22 0 0 15 10
- Other 32 9 17 15 19Reasons for not using improved
varieties in survey year (% hh) (n=109) (n=23) (n=73) (n=64) (n=269, nr)
- Lack of money 43 41 53 61 47- Satisfied with existing 52 59 47 9 44- Other 5 0 0 30 9
Notes: n: sample size; all ps (Chi-square) highly significant (0.00) unless otherwise indicated (nr: not relevant [empty cells]).
5.3 Sources of maize seed for f arm householdsThe surveyed farm households started using improved maize seed varieties relatively
recentlyon average some five years before the survey (2002-03 across study sites). The
maize varieties that were first used by the surveyed farm households are listed in Table 41
many of which were still in use during the survey year (Table 39). The households were
queried as to their sources of improved variety seed and related information (Table 42).6 The
main information sources were fellow farmers and the public extensionreported about
equally overall but with a marked regional variation. Public extension is strikingly prominent
in Ethiopia and Tanzania whereas fellow farmers are much more prominent in the Kenyaand Uganda study areas. Improved maize variety seed was primarily acquired through
purchases, mainly from agro-dealers. In the Ethiopia and Tanzania study areas it was
relatively more common for farmers to acquire seed through public channels. A quarter of
6The indicators were collected for both the initial adoption and for the survey year. In view of the recent nature of
adoption they proved very similar and the data in the table presents the combined responses for those households that
have used any improved variety during the 5 years preceding the survey.
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the surveyed farm households used saved seed and 16% seed from another farmer. About
half the surveyed households reported availability as the main reason for the choice of seed
source.
Table 41. Reported initialimproved maize varieties by surveyed farm households in the drought
prone study areas of eastern Africa (n=635).Ethiopia Kenya Uganda Tanzania
(n=293) (n=154) (n=124) (n=64)
Katumani (20%)
Hawasa (17%)
BH540 (14%)
Mirtzer (12%)
Pioneer (10%)
Limati (9%)
Melkasa (7%)
Key Maize (3%)
Other (8%)
Pioneer 3253 (56%)
Duma41 (10%)
H511 (10%)
Katumani (8%)
Pan67 (3%)
Other (12%)
Longe 1 (41%)
Longe 4 (27%)
Longe 5 (26%)
Other (6%)
Cargil (25%)
Seedco (23%)
Kilima (19%)
Ilonga (16%)
Other (17%)
Notes: Listed are varieties that were named at least 5 times by country, with remainder lumped under others.
Table 42. Improved maize varieties access indicators for surveyed farm households in the drought
prone study areas of eastern Africa.
Ethiopia Kenya Uganda Tanzan
ia
Sample mean
(n)
Information source (% hh) (n=316) (n=192) (n=126) (n=65) (n=699)
- Fellow farmers 37 80 60 17 51- Ministry/extension 77 8 27 45 46- Radio 7 24 10 35 15- Other 14 28 25 17 20
Seed source (% hh) (n=316) (n=193) (n=126) (n=65) (n=700)
- Agro-dealer purchase 6 70 37 19 31- Market purchase 22 24 13 5 19- Ministry purchase 22 3 3 19 13- Other purchase 3 2 7 15 5- Free from institution 17 3 18 22 14- From another farmer 22 3 16 28 16- Saved seed 40 21 7 11 26- Other 9 0 1 2 4
Availability as main reason for seed
source choice (% hh)
37 72 78 56 56 (688)
Notes: only for 716 households that used any improved variety during the 5 years preceding the survey. n: sample size [valid
responses]; all ps (Chi-square) highly significant (0.00). Responses do not sum to 100% as multiple responses for householdpossible.
About half (55% overall) of the surveyed farm households reported purchasing maize seed
during the survey year, this being more common in the Kenya study site (63%) and least
common in Tanzania (42% - Table 43). The maize varieties reportedly purchased by